Amid the AI Layoff Wave, OpenAI Opens "Iron Rice Bowl" for Salespeople

比推Published on 2026-03-24Last updated on 2026-03-24

Abstract

Amid widespread AI-driven layoffs across the tech industry—with companies like Block, Pinterest, and Dow Chemical cutting thousands of jobs—OpenAI is expanding its workforce by hiring 3,500 new employees, primarily in sales, partnership management, and technical ambassador roles. While AI is replacing standardized, task-based jobs (e.g., coding, customer service), OpenAI’s recruitment focuses on roles that require human interaction: convincing enterprise clients to adopt AI, integrating systems, and providing tailored solutions. Despite ChatGPT’s massive user base, monetization remains challenging, with significant losses per user. Enterprise clients, crucial for profitability, are increasingly choosing competitors like Anthropic’s Claude. OpenAI’s shift reflects a broader trend: AI excels at clearly defined tasks but struggles with ambiguous, relationship-driven work like sales and customization. The company is even exploring partnerships with private equity firms to support AI implementation. The key differentiator between replaced and valued roles is whether the job can be easily described—if so, it’s vulnerable to AI automation. Roles requiring nuanced, human-driven problem-solving remain in demand.

Author: Curry

Original Title: AI Leads to Layoffs, But OpenAI Is Hiring Salespeople


Companies building AI are massively recruiting "field promoters"—the shovels are made, but someone still needs to teach others how to dig.

Recently, a wave of AI-induced unemployment anxiety has swept across the internet in both the East and the West.

Block laid off 4,000 people, with the CEO saying AI can do your job; Pinterest cut 15% of its employees, redirecting funds to AI initiatives; Dow Chemical laid off 4,500 people, citing a shift toward automation...

Domestically, things aren’t quiet either: NetEase was rumored to be replacing outsourced workers with AI, iFlytek denied rumors of large-scale layoffs, and ByteDance was reported to be optimizing 20% of non-AI departments every six months...

According to statistics, in the first three months of 2026, the global tech industry has already seen over 45,000 layoffs, with nearly 10,000 explicitly attributed to AI.

Against this backdrop, last Friday, the Financial Times reported that OpenAI plans to expand its workforce from 4,500 to 8,000 by the end of the year.

3,500 new positions. The company building AI actually says it doesn’t have enough people?

Take a look at OpenAI’s recruitment page: engineers and researchers are, of course, being hired, but equally prominent are another category of roles: partnership managers, enterprise sales, GTM (go-to-market strategy) teams, and a new role mentioned in the report called "technical ambassadorship," which translates to:

Technical Ambassador, specifically tasked with helping enterprise clients learn how to use AI.

So, OpenAI isn’t hiring people to make AI stronger; it’s hiring people to make others willing to pay for AI.

Winning Clients Trumps Winning Models

ChatGPT has 900 million weekly active users, but most don’t pay.

Even paying consumers are being served at a loss for OpenAI: the computing cost per heavy user exceeds the $20 monthly fee. Projected revenue for this year is $25 billion, with an expected loss of $14 billion.

Consumers support traffic; enterprise clients support profits. And enterprise clients are running toward Anthropic’s Claude.

Data from Ramp shows that among enterprises making their first AI tool purchase, Anthropic captured 73% of the share. Ten weeks ago, this data was split evenly between the two.

In December of last year, Altman sent a "code red" memo to all staff, pausing all non-core projects like advertising and shopping assistants, and concentrating all company resources on the ChatGPT experience.

The immediate trigger was Google’s Gemini 3 outperforming ChatGPT in multiple tests, but the underlying anxiety lies on the enterprise side: Anthropic is embedding Claude into customers’ codebases and workflows. Once set up, migration costs begin to snowball.

Models can be iterated, but customers who leave won’t come back on their own. Chasing customers can’t rely on AI suggestions; it requires real people to knock on doors.

The Shovel Can’t Sell Itself

AI can write code, handle customer service, and perform data analysis, but there’s one thing it can’t do:

Persuade a company’s technical lead to sign an annual contract to buy me.

For individuals using AI, downloading an app is enough; dissatisfaction leads to uninstalling. Enterprise use of AI is another matter. Data security reviews, internal process changes, compatibility with existing systems, employee training—any single hurdle can stall a project.

This isn’t a problem solvable by model benchmarks; it requires someone to sit in the client’s conference room to push things forward.

OpenAI clearly gets it. It’s not just hiring salespeople; the FT reported it’s in talks with private equity firms like TPG and Brookfield about joint ventures specifically to help enterprises implement AI. The essence of this business is still about sending people on-site.

Block’s story tells the same tale.

Less than three weeks after laying off 4,000 people, the company started calling people back. A design engineer was told it was a "mistaken layoff"; a technical lead found that after his entire team was cut, no one could handle critical business, threatening to quit, prompting the company to rehire some people.

Dorsey himself preemptively noted in the layoff letter: We might have cut the wrong some people...

AI is indeed causing layoff anxiety, but cutting the lifeblood arteries of a company due to AI is clearly an overcorrection. Even in a company where the CEO publicly states AI can replace most employees, there are still links in the chain that AI can’t handle.

AI is best at replacing tasks that can be clearly defined, but "convincing an organization it needs AI, then helping it use it" is something that precisely cannot be clearly defined.

Every technological revolution has someone saying "the shovel sellers make the most money." This round of AI is no different, with consensus being that infrastructure companies are safe bets, regardless of who wins or loses.

But OpenAI’s current situation shows that once the shovels are made, someone still needs to teach others how to use them. And this "teaching" process恰恰 cannot be accomplished by the shovel itself.

Field Promotion: The Iron Rice Bowl in AI Anxiety

Looking at the people laid off and those hired in this wave, a dividing line emerges.

A large portion of the 4,000 people cut from Block were engineering and operations roles expanded during the pandemic, doing work that could be standardly described. The bulk of OpenAI’s new 3,500 hires are in sales, customer success, partnership management—work that can’t be written into process documentation.

What OpenAI is doing now has a very old name: field promotion (地推).

Sending people to client offices, sitting down, listening to needs, integrating systems, overseeing implementation. Whether it’s called a Technical Ambassador or a Partnership Manager, stripped of the English, it’s essentially no different from Meituan sending people door-to-door a decade ago to convince restaurant owners to install POS machines during the O2O wars.

This line doesn’t just appear in these two companies.

Shopify’s CEO told employees this year that future requests for more staff must first prove AI can’t do the job. Klarna laid off 700 customer service reps two years ago saying AI was sufficient, then quietly hired people back last year, with the CEO admitting they "moved too fast" on AI.

What’s the difference between those laid off and those hired back?

Layoff-prone roles share a common trait: the work content can be broken down into clear inputs and outputs. Writing a piece of code, replying to a support ticket, generating a report—clear boundaries, something AI excels at.

The characteristics of field promotion are the exact opposite. Helping a financial client integrate AI into a compliance system versus helping a gaming company use AI for content generation—no two projects are the same. The person sitting across the table differs, so the solution differs. This cannot be written into a prompt.

AI isn’t eliminating all jobs; it’s repricing work. What can be explained in one sentence is getting cheaper; what can’t is getting more expensive.

The company that could change the world with one research paper three years ago now needs to hire thousands of people to knock on doors one by one.

If you’re anxious about whether AI will replace you, the answer might not depend on your industry, but on whether your job can be explained in one sentence.

The part that can be explained clearly is already not very safe.


Twitter:https://twitter.com/BitpushNewsCN

Bitpush TG Discussion Group:https://t.me/BitPushCommunity

Bitpush TG Subscription: https://t.me/bitpush

Original link:https://www.bitpush.news/articles/7622926

Trending Cryptos

Related Questions

QWhat is the main reason OpenAI is hiring 3500 new employees, according to the article?

AOpenAI is hiring 3500 new employees, primarily in roles like sales, customer success, and partnership management, to help sell and implement its AI technology with enterprise clients, rather than just focusing on making the models stronger.

QWhy is OpenAI focusing on enterprise clients instead of individual consumers for profitability?

AWhile ChatGPT has 900 million weekly active users, most do not pay, and even paying consumers are served at a loss due to high computational costs. Enterprise clients are crucial for profitability, as they provide sustainable revenue through contracts and integration into business workflows.

QWhat does the term 'technical ambassadorship' refer to in the context of OpenAI's hiring?

A'Technical ambassadorship' refers to a role at OpenAI where employees help enterprise clients learn how to use and implement AI technology effectively, acting as intermediaries to teach and support customers in adopting AI solutions.

QHow does the article contrast the jobs being cut at companies like Block with those being hired at OpenAI?

ACompanies like Block are cutting jobs that involve standardized, clearly defined tasks (e.g., engineering and operations), which AI can handle, while OpenAI is hiring for roles like sales and customer success that require human interaction, customization, and persuasion—tasks that cannot be easily automated or clearly defined.

QWhat is the key takeaway regarding AI's impact on job security, as stated in the article?

AAI is not eliminating all jobs but is repricing them: jobs with clear, definable tasks are becoming cheaper and less secure, while roles that require human nuance, such as sales and client management, are becoming more valuable and secure because they cannot be easily replaced by AI.

Related Reads

NVIDIA CPU Advances, China's RISC-V Responds: Semiconductor Deep Dive - Part Four

NVIDIA is set to launch its new Vera AI data center CPU in China as early as August, with high pricing. While this move offers a new option, it highlights China's continued dependence on foreign-controlled Arm architecture. In response, the Chinese semiconductor industry is increasingly turning to RISC-V as a strategic alternative for achieving high-performance computing autonomy. The article explores the concept of the "impossible triangle" in CPU development—balancing prosperity, control, and autonomy—and posits that RISC-V's open-source, modular nature offers a unique path to achieving all three. While RISC-V is already dominant in embedded systems, the focus is now shifting to data centers and AI workloads. China has become a global hotspot for RISC-V development, driven by AI-driven compute demand, supply chain concerns from export controls, cost benefits of open-source, and strong policy support. Multiple Chinese companies have reportedly crossed the key performance threshold of 15 SPECint per GHz, a benchmark for entering the high-performance CPU club. Progress extends beyond single-core benchmarks. Companies are developing complete computing subsystems, including commercial-grade coherent network-on-chip (NoC) technology and server processors with up to 40 cores that strictly adhere to the RVA23 standard to ensure software compatibility. Real-world applications are emerging in areas like video transcoding and edge AI. However, significant challenges remain. The RISC-V ecosystem faces fragmentation, immature toolchains and verification processes, and gaps in single-core performance and energy efficiency compared to mature x86 and Arm architectures. The formidable software moat, epitomized by NVIDIA's CUDA, is a long-term hurdle. In conclusion, while RISC-V cannot immediately replace offerings like NVIDIA's Vera, it represents a viable long-term path for China to develop a self-sufficient, high-performance CPU ecosystem. The journey is acknowledged to be long and arduous, requiring sustained effort to overcome technical and ecosystem challenges.

marsbit4h ago

NVIDIA CPU Advances, China's RISC-V Responds: Semiconductor Deep Dive - Part Four

marsbit4h ago

My Coding Betting Dashboard is Profiting, but Polymarket is Truly Not a Good Place for 'Arbitrage'

The author built a custom monitoring dashboard for Polymarket, a prediction market platform, and tested it with $1,600, achieving over 30% returns. However, the core argument is that Polymarket is not a good venue for traditional arbitrage. The dashboard has two main sections: a "Portfolio Dashboard" for tracking active positions with key metrics like total capital, P&L, and a risk-control module using a tier system (T1, T2, T3), and an "Opportunity Watchlist" for monitoring markets. The article details a critical structural trap in binary markets: a bet with a high perceived probability of success still carries a 100% loss risk if wrong. The author's T1/T2/T3 system is designed to manage this by limiting position sizes based on conviction and time horizon, emphasizing that high confidence should not equal high concentration. A key insight is the danger of "pseudo-diversification"—betting on different markets driven by the same underlying variable. The author concludes that Polymarket offers few true low-risk, arbitrage opportunities. It is instead a high-risk environment where wins can create a false sense of mastery, leading to large losses. The platform is better viewed as a training ground for honing judgment through disciplined, framework-driven betting rather than a reliable income source. The tools help transform intuition into structured, rule-based decisions to mitigate the risk of catastrophic errors.

marsbit7h ago

My Coding Betting Dashboard is Profiting, but Polymarket is Truly Not a Good Place for 'Arbitrage'

marsbit7h ago

WeChat AI Card Hands-On Guide: Has the AI Shopping Era Arrived?

**"WeChat AI Card" Practical Test Guide: Has the Era of AI Shopping Arrived?** WeChat has officially launched the "AI Exclusive Card," a feature integrated into its Workbuddy AI assistant. This card is designed to handle payments for AI-initiated purchases. Our hands-on test reveals it's not yet a tool for fully autonomous AI shopping, but rather a controlled payment layer for AI agents. The AI Card functions as an isolated sub-wallet within WeChat Pay. Users must bind the card and transfer funds into it from their main wallet. Crucially, every transaction requires explicit user confirmation via smartphone scan; AI cannot spend autonomously. Currently accessible through the Workbuddy agent, the card targets specific digital consumption scenarios: purchasing paid content (reports, data), calling paid APIs/tools, and subscribing to services. Its design prioritizes security and control by separating funds and mandating approval for each payment. We tested a real-world scenario: ordering bubble tea via Workbuddy using a "Meituan Life Assistant" skill. The process encountered multiple hurdles: high "skill" usage costs (exceeding daily free credits), and most importantly, while a payment was successfully initiated, the AI purchased an incorrect product (a mismatched group-buy coupon instead of the desired drink). This highlights the current limitation: the **AI Card only solves the payment step**. The broader challenge lies in the **AI agent's execution chain**—accurately understanding intent, navigating third-party platforms, selecting the right product, and ensuring proper fulfillment. The payment succeeded, but the purchase failed to meet the user's need. In conclusion, the WeChat AI Exclusive Card is a cautious, early-step experiment in AI commerce. It provides a secure, user-controlled payment method for agent interactions but is not yet capable of reliable, end-to-end complex purchases. For now, it's best used for low-value, low-risk digital services with careful user verification at each step. The vision of AI handling complete shopping tasks remains a work in progress.

marsbit9h ago

WeChat AI Card Hands-On Guide: Has the AI Shopping Era Arrived?

marsbit9h ago

Trading

Spot
Futures

Hot Articles

Discussions

Welcome to the HTX Community. Here, you can stay informed about the latest platform developments and gain access to professional market insights. Users' opinions on the price of AI (AI) are presented below.

活动图片